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1. WO2020018574 - SYSTÈME SERVANT À CHOISIR DES VÊTEMENTS ET PROCÉDÉS APPARENTÉS

Note: Texte fondé sur des processus automatiques de reconnaissance optique de caractères. Seule la version PDF a une valeur juridique

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CLAIMS

What is claimed is:

1. An automated system for making apparel recommendations:

a first database comprising a plurality of apparel characteristics with each of a plurality of apparel items recommended for medical events based on health related criteria;

a second database comprising two or more questions requesting information about the user, wherein the two or more questions are configured to be displayed on a user interface of a computing device, at least one of the questions designed to accept a free text response;

a natural language processor configured to extract semantic primitives from two or more answers to the two or more questions from the free text portion of the user interface;

a third database of one or more retailers of a plurality of apparel characteristics with each of a plurality of apparel items recommended for medical events based on health related criteria; and

a rules engine configured to use the semantic primitives from the natural language processor, the first database, and the third database to produce a personalized list of one or more recommended apparel items for the user who has experienced a specific medical event.

2. The system of claim 1, wherein the first database comprises apparel items by expert medical recommendations.

3. The system of claim 1, wherein the rules engine comprises an updating process that continually updates the first database of apparel characteristics with each of a plurality apparel items recommended for medical events based on health related criteria.

4. The system of claim 1, wherein the rales engine uses an algorithm comprising a forward-chaining rules engine that implements a fuzzy logic calculation based on a Bayes’ Theorem to produce the personalized list of one or more recommended apparel items.

5. The system of claim 1, wherein the personalized list comprises recommended items based on one or more criteria including a health challenge of the user, one or more size preferences of the user, one or more color preferences of the user, one or more brand preferences of the user, one or more geographical locations of the user, or any combination thereof, these criteria extracted from the two or more answers to the two questions in the user interface.

6. The system of claim 1, wherein the natural language processor is configured to extract semantic primitives from free text responses or voice-to-text transcripts.

7. A method of building a database of apparel recommendations, the method comprising:

storing, in a first database, a plurality of apparel characteristics with each of a plurality of apparel items recommended for medical events based on information from one or more medical professionals;

storing, in a second database, two or more questions for a plurality of users, each user experiencing one or more of a plurality of medical events;

sending, through a telecommunication channel, to a computing device associated with a user, the two or more questions from the second database to the plurality of users, the computing device associated with the user configured to generate a user interface comprising the two or more questions in response to receiving the two or more questions;

receiving from the computing device, through a telecommunication channel, two or more answers to the two or more questions from the user interface;

processing, with a natural language processor, the two or more answers from the plurality of users to extract the one or more medical events of each of the plurality of users and one or more preferences of each of the plurality of users; generating, using the first database and the rules engine, a list of recommended apparel items for each of the plurality of users based on the one or more medical events extracted from the answers to the two or more questions received from the computing device;

processing, using a third database of apparel retailers and the rales engine, the list of recommended apparel items and the one or more preferences of each of the plurality of users to form a list of preferred recommended apparel items;

generating with the list of the preferred recommended apparel items and the third database of apparel retailers, using one or more calculations of the rules engine, a personalized list of recommended apparel items for each of the plurality of users; and

adding, the personalized list of recommended apparel items for each of the plurality of users to the first database.

8. The method of claim 7, wherein a size of the first database is increased through machine learning.

9. The method of claim 7, wherein the second database comprises at least one of a demographic question and a free text entry question.

10. The method of claim 7, wherein the rules engine uses an algorithm comprising a forward-chaining rules engine that implements a fuzzy logic calculation based on Bayes’ theorem to produce the personalized list of one or more recommended apparel items.

11. The method of claim 7, wherein the personalized list comprises one or recommended items based on one or more criteria including a health challenge of the user, one or more size preferences of the user, one or more color preferences of the user, one or more brand preferences of the user, one or more geographical locations of the user, or any combination thereof, these criteria extracted from the two or more answers to the two questions in the user interface.

12. The method of claim 7, wherein the natural language processor is configured to extract semantic primitives from free text responses or voice-to-text transcripts.

13. An automated method for selecting apparel, the method comprising:

selecting a user facing a medical event;

sending, through a telecommunication channel, a questionnaire to a computing device associated with the user the computing device configured to

generate a user interface comprising the questionnaire, the questionnaire using a second database comprising two or more questions;

receiving, through a telecommunication channel, two or more answers to the questionnaire from a user via the computing device;

processing, with a natural language processor, the two or more answers from the user to extract one or more medical event of the user and one or more preferences of the user;

generating, using the first database, a list of recommended apparel characteristics with each of a plurality of apparel items for the user using one or more medical events extracted from the two or more answers;

processing, using a rules engine, the list of recommended apparel items and the one or more preferences of the user; preferred recommended

generating, using the rules engine and a third database of retailers, a personalized list of recommended apparel items;

communicating, through a telecommunication channel, to the computing device the personalized list of items using the computing device generated user interface comprising a personalized list of recommended apparel items; and sending, using the user interface of the computing device, to one or more preselected potential buyers one or more items from the personalized list.

14. The method of claim 13, wherein the user comprises one of a person dealing with a medical event, a friend, a family member, a medical professional, a social worker, or any combination thereof.

15. The method of claim 13, wherein the rules engine uses an algorithm comprising a forward-chaining rules engine that implements a fuzzy logic calculation based on a Bayes’Theorem to produce the personalized list of one or more recommended apparel items.

16. The method of claim 13, wherein the personalized list comprises recommended apparel characteristics based on one or more criteria including a health challenge of the user, one or more size preferences of the user, one or more color preferences of the user, one or more brand preferences of the user, one or more geographical locations of the user, or any combination thereof, these criteria extracted from the two or more answers to the two questions in the user interface.

17. The method of claim 13, wherein the natural language processor is configured to extract semantic primitives from free text responses or voice-to-text transcripts.

18. The method of claim 13, further comprising sending a beneficiary user of the user a unique identifier of a beneficiary user interface to notify the beneficiary user of the beneficiary user interface.

19. The method of claim 18, wherein sending the beneficiary user a unique identifier comprises one of sending an email or sending a postcard.

20. The method of claim 13, further comprising facilitating the purchase of a personalized item through a third database of apparel retailers.